This paper proposes an asymptotically efficient method for estimating models with conditional moment restrictions. Our estimator generalizes the maximum empirical likelihood estimator (MELE) of Qin and Lawless (1994). Using a kernel smoothing method, we efficiently incorporate the information implied by the conditional moment restrictions into our empirical likelihood-based procedure. This yields a one-step estimator which avoids estimating optimal instruments. Our likelihood ratio-type statistic for parametric restrictions does not require the estimation of variance, and achieves asymptotic pivotalness implicitly. The estimation and testing procedures we propose are normalization invariant. Simulation results suggest that our new estimator...
This thesis consists of three research chapters on the theory of empirical likelihood (EL), which is...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
This paper proposes an empirical likelihood-based estimation method for semiparametric conditional m...
An empirical likelihood test is proposed for parameters of models defined by conditional moment rest...
We show how to use a smoothed empirical likelihood approach to conduct efficient semiparametric infe...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
Many statistical models, e.g. regression models, can be viewed as conditional moment restrictions wh...
The aim of this thesis is to investigate Generalised Empirical Likelihood (GEL) and related informat...
We propose nonnested tests for competing conditional moment restriction models using the method of c...
In econometrics, models stated as conditional moment restrictions are typically estimated by means o...
We propose non-nested hypothesis tests for conditional moment restriction models based on the method...
The primary focus of this article is the provision of tests for the validity of a set of conditional...
This thesis consists of three research chapters on the theory of empirical likelihood (EL), which is...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
This paper proposes an empirical likelihood-based estimation method for semiparametric conditional m...
An empirical likelihood test is proposed for parameters of models defined by conditional moment rest...
We show how to use a smoothed empirical likelihood approach to conduct efficient semiparametric infe...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
Many statistical models, e.g. regression models, can be viewed as conditional moment restrictions wh...
The aim of this thesis is to investigate Generalised Empirical Likelihood (GEL) and related informat...
We propose nonnested tests for competing conditional moment restriction models using the method of c...
In econometrics, models stated as conditional moment restrictions are typically estimated by means o...
We propose non-nested hypothesis tests for conditional moment restriction models based on the method...
The primary focus of this article is the provision of tests for the validity of a set of conditional...
This thesis consists of three research chapters on the theory of empirical likelihood (EL), which is...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
This article addresses statistical inference in models defined by conditional moment restrictions. O...